---
title: "Migration Guide: v0.x to v1.x"
description: "Guide for migrating from Agency Swarm v0.x to v1.x (OpenAI Agents SDK based)"
icon: "book"
---

Agency Swarm v1.x is a complete rewrite built on the OpenAI Agents SDK, bringing significant improvements and new capabilities.

## Installation

<Tabs defaultValue="v1.x (New)">
<Tab title="v0.x (Previous)">
```bash
pip install "agency-swarm<1.0.0"
```

<Note>
v0.x documentation remains available at the current site until v1.0 reaches general availability.
</Note>
</Tab>

<Tab title="v1.x (New)">
```bash
pip install agency-swarm
```

<Info>
If you encounter issues, please create a GitHub issue with the **v1.x** label.
</Info>
</Tab>
</Tabs>

## What's New in v1.x

<CardGroup cols={2}>
<Card title="Latest AI Models" icon="robot">
Full support for reasoning models

Web Search and Computer Use capabilities
</Card>

<Card title="Better Performance" icon="bolt">
Async-first architecture with direct conversation control
</Card>

<Card title="Enhanced Tools" icon="wrench">
Simple `@function_tool` decorator replaces complex BaseTool classes
</Card>

<Card title="Direct Control" icon="gear">
No more black-box Assistants API - full control over threads and runs
</Card>
</CardGroup>

<Accordion title="📋 Complete Feature Comparison">
### New Capabilities
- **Web Search & Computer Use**: Native OpenAI Responses API integration
- **Latest Models**: Full support for o3, o4-mini, and future OpenAI models via Responses API
- **Third-Party Models**: Use any Chat Completions API-compatible provider
- **Direct Thread Control**: No more black-box Assistants API limitations
- **Full Conversation Persistence**: Complete history management (not just thread IDs)
- **Enhanced Validation**: `output_guardrails` and `input_guardrails` system

### Architectural Improvements
- **Orchestrator Pattern on New Foundation**: Agency Swarm's proven orchestrator-workers pattern now runs on the OpenAI Agents SDK foundation
- **Async-first**: Native async execution for better performance
- **Enhanced Communication**: Defined `communication_flows` for coordinated multi-agent execution
- **Better State Management**: Complete conversation history persistence

### Enhanced Developer Experience
- **Structured Outputs**: Native Pydantic model support for agent outputs via `output_type`
- **Modern Tool System**: `@function_tool` decorator replaces `BaseTool` classes for cleaner tool definitions
- **Better Validation**: `output_guardrails` and `input_guardrails` replace the old `response_validator` system
- **Real-time Streaming**: Improved streaming capabilities with async response handling
</Accordion>

<Accordion title="🏗️ Understanding the Migration">
The migration from v0.x to v1.x represents a fundamental shift in how Agency Swarm operates:

### Execution Core
- **v0.x**: Used OpenAI Assistants API runs directly
- **v1.x**: Uses `agents.Runner` from OpenAI Agents SDK for more control

### State Management
- **v0.x**: Relied on Assistant/Thread objects managed by OpenAI
- **v1.x**: Uses `ThreadManager` and `MessageStore` managed via `RunHooks` and shared `MasterContext`

### Agent Definition
- **v0.x**: Custom `Agent` class with Assistants API integration
- **v1.x**: `agency_swarm.Agent` extends `agents.Agent`, incorporating tools, subagent registration, and file handling

### Conversation History Persistence

This is an important architectural difference between versions:

- **v0.x (Assistants API)**: Required thread callbacks for production to persist OpenAI Assistant/Thread IDs. OpenAI managed conversation history server-side.
- **v1.x (Agents SDK)**: Required thread callbacks for production to persist complete conversation histories locally. You manage the full conversation state.

**Key Changes:**
- **Callback Structure**: `threads_callbacks` dict → separate `load_threads_callback` and `save_threads_callback` parameters
- **Data Format**: Thread IDs only → Complete conversation histories
- **Callback Signatures**: Unchanged (both use no-parameter callbacks with closure)

</Accordion>

## Step-by-Step Migration

<Accordion title="🔧 Agency & Agent Updates" defaultOpen>
### Agency Constructor

<CodeGroup>
```python v0.x
def load_threads(chat_id):
    return load_threads_from_db(chat_id)  # Returns thread IDs

def save_threads(new_threads):
    save_threads_to_db(new_threads)  # Saves thread IDs

agency = Agency(
    agency_chart=[agent1, [agent1, agent2]],  # Will show warning
    threads_callbacks={
        'load': lambda: load_threads(chat_id),
        'save': lambda new_threads: save_threads(new_threads)
    }
)
```

```python v1.x
def load_threads(chat_id):
    # Load the complete conversation history instead of just thread IDs
    return load_conversation_history(chat_id)

def save_threads(thread_dict):
    # Persist the full conversation histories
    save_conversation_history(thread_dict)

agency = Agency(
    entry_point_agent,  # Positional argument
    communication_flows=[(agent1, agent2)],
    load_threads_callback=lambda: load_threads(chat_id),
    save_threads_callback=lambda new_threads: save_threads(new_threads)
)
```
</CodeGroup>

<Warning>
**Data Format Change:** Your callbacks now need to store complete conversation histories instead of just thread IDs. Refer to [examples/custom_persistence.py](https://github.com/VRSEN/agency-swarm/blob/main/examples/custom_persistence.py) to see the example implementation.
</Warning>

### Agent Configuration

<CodeGroup>
```python v0.x
agent = Agent(
    name="MyAgent",
    temperature=0.7,
    max_completion_tokens=1000,
    response_validator=my_validator
)
```

```python v1.x
agent = Agent(
    name="MyAgent",
    model_settings=ModelSettings(
        temperature=0.7,
        max_tokens=1000,  # legacy max_prompt_tokens/max_completion_tokens map here automatically
        model="gpt-4o"
    ),
    output_guardrails=[my_guardrail]
)
```
</CodeGroup>
</Accordion>

<Accordion title="🛠️ Tool Migration" defaultOpen>
### Simple Tool Conversion
<Note>
This step is optional. Agency Swarm will keep maintaining the BaseTool approach for tool definition as well.
</Note>

<CodeGroup>
```python v0.x
class ProcessData(BaseTool):
    """Processes input data."""
    input_data: str = Field(..., description="Data to process")

    def run(self):
        return f"Processed: {self.input_data}"
```

```python v1.x
@function_tool
def process_data(input_data: str) -> str:
    """Processes input data."""
    return f"Processed: {input_data}"
```
</CodeGroup>

### Tool with Context Access

<CodeGroup>
```python v0.x
class AdvancedTool(BaseTool):
    data: str = Field(..., description="Input data")

    def run(self):
        # Access shared state
        shared_data = self._shared_state.get("key", "default")
        return f"Result: {self.data} + {shared_data}"
```

```python v1.x
@function_tool
async def advanced_tool(ctx: RunContextWrapper[Any], data: str) -> str:
    """Advanced tool with context access."""
    # Access shared state and other context
    shared_data = ctx.context.get("key", "default")
    return f"Result: {data} + {shared_data}"
```
</CodeGroup>
</Accordion>

<Accordion title="🔒 Validation & Outputs" defaultOpen>
### Response Validation

<CodeGroup>
```python v0.x
class TestAgent(Agent):
    def __init__(self):
        super().__init__(
            name="TestAgent",
            description="..."
        )

    @override
    def response_validator(self, message):
        # User-defined validation function
        if self.check_errors(message):
            raise ValueError("Error processing message")

        # Returns original message if no errors are raised
        return message
```

```python v1.x
@output_guardrail
async def validate_response(
    ctx: RunContextWrapper, agent: Agent, agent_response: str
) -> GuardrailFunctionOutput:
    # User-defined validation logic
    error_msg, tripwire_triggered = check_errors(agent_response)

    return GuardrailFunctionOutput(
        output_info=error_msg,
        tripwire_triggered=tripwire_triggered,
    )

agent = Agent(output_guardrails=[validate_response])
```
</CodeGroup>

### Structured Outputs

<CodeGroup>
```python v0.x
result = agency.get_completion(
    "Analyze this data",
    response_format={"type": "json_schema", "json_schema": {...}}
)
```

```python v1.x
class AnalysisResult(BaseModel):
    status: str
    findings: str

agent = Agent(output_type=AnalysisResult)
result = await agency.get_response("Analyze this data")
# result.final_output is now a typed AnalysisResult object
```
</CodeGroup>
</Accordion>

<Accordion title="🔄 Interaction Updates" defaultOpen>
### Getting Agency Response

<CodeGroup>
```python v0.x
# Synchronous (still works but deprecated)
result = agency.get_completion("Hello")

# Streaming (removed)
stream = agency.get_completion_stream("Hello")
```

```python v1.x
# Async (recommended)
import asyncio

async def main():
    result = await agency.get_response("Hello")
    print(result.final_output)

# Streaming (async only)
async def stream_example():
    async for chunk in agency.get_response_stream("Hello"):
        print(chunk)

asyncio.run(main())
```
</CodeGroup>
</Accordion>

## Complete Migration Example

<Tabs defaultValue="After (v1.x)">
<Tab title="Before (v0.x)">
```python
from agency_swarm import Agency, Agent, BaseTool
from pydantic import Field

class DataProcessor(BaseTool):
    """Processes data."""
    data: str = Field(..., description="Input data")

    def run(self):
        return f"Processed: {self.data}"

class Analyst(Agent):
    def __init__(self):
        super().__init__(
            name="Analyst",
            description="Analyzes data",
            tools=[DataProcessor],
            temperature=0.7
        )

    def response_validator(self, message):
        if "error" in message.lower():
            raise ValueError("Invalid response")
        return message

agency = Agency(
    agency_chart=[Analyst()],
    shared_instructions="Be helpful and accurate."
)

result = agency.get_completion("Analyze sample data")
```
</Tab>

<Tab title="After (v1.x)">
```python
from agency_swarm import (
    Agency,
    Agent,
    function_tool,
    ModelSettings,
    output_guardrail,
    GuardrailFunctionOutput,
)
from pydantic import BaseModel, Field
import asyncio

# Modern tool definition
@function_tool
def data_processor(data: str) -> str:
    """Processes data."""
    return f"Processed: {data}"

# Structured output
class AnalysisResult(BaseModel):
    status: str
    findings: str

# Validation guardrail
@output_guardrail
async def validate_analysis(ctx, agent, response):
    if "error" in response.lower():
        return GuardrailFunctionOutput(
            output_info="Invalid response detected",
            tripwire_triggered=True
        )
    return GuardrailFunctionOutput(output_info="Valid response")

# Agent with modern configuration
analyst = Agent(
    name="Analyst",
    description="Analyzes data",
    tools=[data_processor],
    output_type=AnalysisResult,
    output_guardrails=[validate_analysis],
    model_settings=ModelSettings(temperature=0.7, model="gpt-4o")
)

agency = Agency(
    analyst,
    shared_instructions="Be helpful and accurate."
)

# Modern async usage
async def main():
    result = await agency.get_response("Analyze sample data")
    print(result.final_output)  # Typed AnalysisResult object

asyncio.run(main())
```
</Tab>
</Tabs>

## Reference Tables

<Accordion title="📚 API changes overview">
### Agency Methods

| v0.x | Status | v1.x alternative |
|:----:|:------:|:----------------:|
| `get_completion()` | ✅ Backward compatible | `get_response()` (async) |
| `get_completion_stream()` | ❌ Removed | `get_response_stream()` (async) |
| `agency_chart` | ⚠️ Deprecated | Positional args + `communication_flows` |
| `model` (global default) | ❌ Removed | Configure each `Agent` via `model_settings` |
| `threads_callbacks` | ❌ Breaking change | `load_threads_callback` + `save_threads_callback` |

### Agent Parameters

| v0.x | Status | v1.x alternative |
|:----:|:------:|:----------------:|
| `temperature`, `top_p`, etc. | ⚠️ Individual params deprecated | `model_settings=ModelSettings(...)` |
| `response_validator` | ❌ Removed | `output_guardrails`, `input_guardrails` |
| `response_format` | ❌ Removed | `output_type` |
| `examples` | ⚠️ Deprecated | Auto-prepended to `instructions` |

### Tools

| v0.x | Status | v1.x alternative |
|:----:|:------:|:----------------:|
| `BaseTool` classes | ⚠️ BaseTool still works | `@function_tool` decorator (recommended) |
| `run()` method | ✅ Simplified | Direct function body implementation |
| `_shared_state` | ✅ Enhanced | `ctx.context` |
</Accordion>

## Getting Help

<CardGroup cols={2}>
<Card title="Examples" icon="code" href="https://github.com/VRSEN/agency-swarm/tree/main/examples">
Working v1.x examples with detailed comments
</Card>

<Card title="Issues" icon="bug" href="https://github.com/VRSEN/agency-swarm/issues">
Report v1.x issues with the **v1.x** label
</Card>

<Card title="OpenAI Agents SDK" icon="link" href="https://openai.github.io/openai-agents-python/">
Official OpenAI Agents SDK documentation
</Card>

<Card title="v0.x Docs" icon="book" href="https://agency-swarm.ai">
Current production documentation
</Card>
</CardGroup>
